Even to a simple and short news headline, readers react in a multitude of ways: cognitively (e.g., inferring the writer's intent), emotionally (e.g., feeling distrust), and behaviorally (e.g., sharing the news with their friends). Such reactions are instantaneous and yet complex, as they rely on factors that go beyond interpreting the factual content of the news headline. Instead, understanding reactions requires pragmatic understanding of the news headline, including broader background knowledge about contentious news topics as well as commonsense reasoning about people's intents and emotional reactions. We propose Misinfo Reaction Frames, a pragmatic formalism for modeling how readers might react to a news headline cognitively, emotionally, and behaviorally. We also introduce a Misinfo Reaction Frames corpus, a dataset of over 200k news headline/annotated dimension pairs with crowdsourced reactions focusing on global crises: the Covid-19 pandemic, climate change, and cancer. Empirical results confirm that it is indeed possible to learn the prominent patterns of readers' reactions to news headlines. We also find a potentially positive use case of our model; When we present our model generated inferences to people, we find that the machine inferences can increase readers' trust in real news while decreasing their trust in misinformation. Our work demonstrates the feasibility and the importance of pragmatic inferences of news to help enhance AI-guided misinformation detection and mitigation.
翻译:即使是简单而短的新闻标题,读者也会以多种方式作出反应:认知(例如,推断作家的意图)、情感(例如,感觉不信任)和行为(例如,与朋友分享新闻),这些反应是即时而复杂的,因为它们依赖于超越解释新闻标题的事实内容的因素。相反,理解反应需要务实地理解新闻标题,包括关于有争议的新闻议题的更广泛的背景知识以及关于人们的意图和情绪反应的常识推理。我们建议Misinfo Reaction框架,一种务实的形式主义,以模拟读者如何对新闻标题的认知、情感和行为反应。我们还引入了Misinfo Reaction框架,一套超过200公里的新闻头条/附加说明的维度的数据集,以全球危机为焦点:Covid-19大流行病、气候变化和癌症为主的众人源反应为主。我们确实有可能了解读者对新闻标题模型的反应的突出模式。我们还发现一个可能正面的形式,同时用“错误信息框架”来提高人们的信任度。我们用一个潜在的正面的模型来显示他们的信任度。